利用判别压缩网络增强对ssvep的检测。

Dian Li, Yongzhi Huang, Ruixin Luo, Lingjie Zhao, Xiaolin Xiao, Kun Wang, Weibo Yi, Minpeng Xu, Dong Ming
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引用次数: 0

摘要

摘要目的。基于稳态视觉诱发电位的脑机接口(SSVEP-BCIs)因其简单、高信噪比和高信息传输速率而受到广泛关注。目前,准确的检测是提高SSVEP-BCI系统性能的关键问题。方法:利用空间滤波和深度学习的优势,提出了一种新的解码方法——判别压缩网络(discomnet)。具体而言,本研究利用全局模板对齐(GTA)和判别空间模式(DSP)对SSVEP特征进行增强,然后设计一个压缩时空模块(CTSM)来提取更精细的特征。在自采集高频数据集、公共基准数据集和公共可穿戴数据集上对该方法进行了评估。主要结果:结果表明,Dis-ComNet显著优于最先进的空间滤波方法、深度学习方法和其他融合方法。与高频数据集的eTRCA、eTRCA- r、TDCA、DNN、EEGnet、Ensemble-DNN和TRCA-Net相比,Dis-ComNet的分类准确率分别提高了3.9%、3.5%、3.2%、13.3%、17.4%、37.5%和2.5%。所得结果分别比eTRCA、eTRCA- r、DNN、EEGnet、Ensemble-DNN和TRCA-Net分别高出4.7%、4.6%、23.6%、52.5%、31.7%和7.0%,与Benchmark数据集中的TDCA相当。Dis-ComNet在可穿戴数据集中的准确率分别比eTRCA、eTRCA- r、DNN、EEGnet、Ensemble-DNN和TRCA-Net高9.5%、7.1%、36.1%、26.3%、15.7%和4.7%,与TDCA相当。此外,我们的模型在高频、基准和可穿戴数据集上的itr分别达到126.0 bits/min、236.4 bits/min和103.6 bits/min。意义:本研究建立了一种有效的ssvep检测模型,促进了高精度SSVEP-BCI系统的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing detection of SSVEPs using discriminant compacted network.

Objective. Steady-state visual evoked potential-based brain-computer interfaces (SSVEP-BCIs) have gained significant attention due to their simplicity, high signal to noise ratio and high information transfer rates (ITRs). Currently, accurate detection is a critical issue for enhancing the performance of SSVEP-BCI systems.Approach.This study proposed a novel decoding method called Discriminant Compacted Network (Dis-ComNet), which exploited the advantages of both spatial filtering and deep learning (DL). Specifically, this study enhanced SSVEP features using global template alignment and discriminant spatial pattern, and then designed a compacted temporal-spatio module (CTSM) to extract finer features. The proposed method was evaluated on a self-collected high-frequency dataset, a public Benchmark dataset and a public wearable dataset.Main Results.The results showed that Dis-ComNet significantly outperformed state-of-the-art spatial filtering methods, DL methods, and other fusion methods. Remarkably, Dis-ComNet improved the classification accuracy by 3.9%, 3.5%, 3.2%, 13.3%, 17.4%, 37.5%, and 2.5% when comparing with eTRCA, eTRCA-R, TDCA, DNN, EEGnet, Ensemble-DNN, and TRCA-Net respectively in the high-frequency dataset. The achieved results were 4.7%, 4.6%, 23.6%, 52.5%, 31.7%, and 7.0% higher than those of eTRCA, eTRCA-R, DNN, EEGnet, Ensemble-DNN, and TRCA-Net, respectively, and were comparable to those of TDCA in Benchmark dataset. The accuracy of Dis-ComNet in the wearable dataset was 9.5%, 7.1%, 36.1%, 26.3%, 15.7% and 4.7% higher than eTRCA, eTRCA-R, DNN, EEGnet, Ensemble-DNN, and TRCA-Net respectively, and comparable to TDCA. Besides, our model achieved the ITRs up to 126.0 bits/min, 236.4 bits/min and 103.6 bits/min in the high-frequency, Benchmark and the wearable datasets respectively.Significance.This study develops an effective model for the detection of SSVEPs, facilitating the development of high accuracy SSVEP-BCI systems.

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